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首页> 外文期刊>Journal of Hydrology >Bootstrap based artificial neural network (BANN) analysis for hierarchical prediction of monthly runoff in Upper Damodar Valley Catchment
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Bootstrap based artificial neural network (BANN) analysis for hierarchical prediction of monthly runoff in Upper Damodar Valley Catchment

机译:基于Bootstrap的人工神经网络(BANN)分析用于上达莫达河谷集水区月径流量的分层预测

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Estimation of runoff is a prerequisite for many applications involving conservation and management of water resources. This study is undertaken in the Upper Damodar Valley Catchment (UDVC) having a drainage area of 17513.08 km(2) for prediction of monthly runoff. Thirty one microwatersheds and 15 sub-watersheds were selected from a total of 716 microwatersheds in the catchment area for this study. The feasibility of using different soil attributes (particle size distribution, organic matter content and apparent density), topographic attributes (primary, secondary and compound), geomorphologic attributes (basin, relief and network indices) and vegetation attribute as Normalized Difference Vegetation Index (NDVI), on prediction of monthly runoff were explored in this study. Principal Component Analysis (PCA) was applied to minimize the data redundancy of the input variables. Ten significant input variables namely; watershed length (km), elongation ratio, bifurcation ratio, area ratio, coarse sand (%), fine sand (%), elevation (m), slope ((o)), profile curvature (rad/m) and NDVI were selected The selected input variables were added in hierarchy with monthly rainfall (mm) as inputs for prediction of monthly runoff (mm) using Bootstrap based artificial neural networks (BANN). The performance of the models was tested using Spearman's correlation coefficient (r), coefficient of efficiency (COE), Root Mean Square Error (RMSE) and Mean Absolute Error (MAE). Best performance was observed for model with monthly rainfall, slope, coarse sand, bifurcation ratio and Normalized Difference Vegetation Index (NDVI) as inputs (r = 0.925 and COE = 0.839). Increase in number of input variables did not necessarily yield better performances of the BANN models. Selection of relevant inputs and their combinations were found to be key elements in determining the performance of BANN models. Annual runoff map was generated for all the microwatersheds utilizing the weights of the best performing BANN model. This study reveals that the specific combinations of soil, topography, geomorphology and vegetation inputs can be utilized for better prediction of monthly runoff.
机译:径流估算是许多涉及水资源保护和管理的应用的前提。这项研究是在上游达莫达河谷集水区(UDVC)进行的,流域面积为17513.08 km(2),用于预测月径流量。从本研究的集水区总共716个微流域中选择了31个微流域和15个子流域。使用不同的土壤属性(粒度分布,有机质含量和表观密度),地形属性(主要,次要和化合物),地貌属性(盆地,地形和网络指数)和植被属性作为归一化植被指数(NDVI)的可行性),在本研究中探讨了预测月径流量的方法。应用主成分分析(PCA)可以最大程度地减少输入变量的数据冗余。十个重要的输入变量,即;选择分水岭长度(km),延伸率,分叉率,面积比,粗砂(%),细砂(%),高程(m),坡度((o)),轮廓曲率(rad / m)和NDVI使用基于Bootstrap的人工神经网络(BANN),将选定的输入变量与月降雨量(mm)分层添加,以作为预测月径流(mm)的输入。使用Spearman相关系数(r),效率系数(COE),均方根误差(RMSE)和平均绝对误差(MAE)来测试模型的性能。对于以月降雨量,坡度,粗砂,分叉比和归一化植被指数(NDVI)作为输入的模型,观察到最佳性能(r = 0.925和COE = 0.839)。输入变量数量的增加并不一定会带来BANN模型更好的性能。发现相关输入及其组合的选择是确定BANN模型性能的关键要素。利用性能最佳的BANN模型的权重,为所有微流域生成了年度径流图。这项研究表明,土壤,地形,地貌和植被输入的特定组合可以用来更好地预测月径流量。

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